Titre : |
Genomic Analysis and Artificial Intelligence: Predicting Viral Mutations and Future Pandemics |
Type de document : |
document électronique |
Auteurs : |
Fadhil G. Al-Amran, Auteur ; Abbas M. Hezam, Auteur ; Salman Rawaf, Auteur ; Maitham G. Yousif, Auteur |
Editeur : |
medical advances and innovations journal |
Année de publication : |
2023 |
Note générale : |
Volume 1; Issue 3 |
Langues : |
Anglais (eng) |
Catégories : |
576 Évolution, génétique
|
Tags : |
'Genomic analysis artificial intelligence , viral mutations , future pandemics predictive modeling génétique '. |
Index. décimale : |
576 |
Résumé : |
This study presents a novel approach at the intersection of genomic analysis and artificial intelligence (AI) to predict viral mutations and assess the risks of future pandemics. Through comprehensive genomic analysis, genetic markers associated with increased virulence and transmissibility are identified. Advanced machine learning algorithms are employed to analyze genetic data and forecast viral mutations, taking into account factors such as replication rates, host-pathogen interactions, and environmental influences. The research also evaluates the risk of future pandemics by examining zoonotic reservoirs, human-animal interfaces, and climate change impacts. AI-powered risk assessment models provide insights into potential outbreak hotspots, facilitating targeted surveillance and preventive measures. This research offers a proactive approach to pandemic preparedness, enabling early intervention and the development of effective containment strategies and vaccines. The fusion of genomic analysis and AI enhances our ability to mitigate the impact of infectious diseases on a global scale, emphasizing the importance of proactive measures in safeguarding public health. |
En ligne : |
https://arxiv.org/abs/2309.15936 |
Format de la ressource électronique : |
PDF |
Genomic Analysis and Artificial Intelligence: Predicting Viral Mutations and Future Pandemics [document électronique] / Fadhil G. Al-Amran, Auteur ; Abbas M. Hezam, Auteur ; Salman Rawaf, Auteur ; Maitham G. Yousif, Auteur . - medical advances and innovations journal, 2023. Volume 1; Issue 3 Langues : Anglais ( eng)
Catégories : |
576 Évolution, génétique
|
Tags : |
'Genomic analysis artificial intelligence , viral mutations , future pandemics predictive modeling génétique '. |
Index. décimale : |
576 |
Résumé : |
This study presents a novel approach at the intersection of genomic analysis and artificial intelligence (AI) to predict viral mutations and assess the risks of future pandemics. Through comprehensive genomic analysis, genetic markers associated with increased virulence and transmissibility are identified. Advanced machine learning algorithms are employed to analyze genetic data and forecast viral mutations, taking into account factors such as replication rates, host-pathogen interactions, and environmental influences. The research also evaluates the risk of future pandemics by examining zoonotic reservoirs, human-animal interfaces, and climate change impacts. AI-powered risk assessment models provide insights into potential outbreak hotspots, facilitating targeted surveillance and preventive measures. This research offers a proactive approach to pandemic preparedness, enabling early intervention and the development of effective containment strategies and vaccines. The fusion of genomic analysis and AI enhances our ability to mitigate the impact of infectious diseases on a global scale, emphasizing the importance of proactive measures in safeguarding public health. |
En ligne : |
https://arxiv.org/abs/2309.15936 |
Format de la ressource électronique : |
PDF |
|